FIELD OF THE INVENTION
[0001] A method and system of predicting a hypotensive episode using one or more time varying
hypotensive biomarkers corresponding to physiological processes in the patient, and
generating an acute hypotension prediction classifier based upon classification of
3D temporal representation of two or more biomarkers before an appearance of hypotensive
episode.
BACKGROUND OF THE INVENTION
[0002] Acute hypotensive episodes (AHEs) are one of the most critical events that generally
occur in intensive care units (ICUs). An acute hypotensive episode is a clinical condition
typically characterized by abnormally low blood pressure values and other related
values. For example, an acute hypotensive episode may occur in an interval of from
5 minutes up to 30 minutes or more during which at least 90% of the mean arterial
pressure (MAP) measurements of a patient are at or below 70 mmHg. According to the
other definition of acute hypotensive episode it appears when systolic value of arterial
blood pressure (ABP) drops below 90 mmHg. Acute hypotensive episodes may occur due
to a large number of causes. The causes of acute hypotensive episodes, among others,
may include sepsis, myocardial infarction, cardiac arrhythmia, pulmonary embolism,
hemorrhage, dehydration, anaphylaxis, medication, vasodilatory shock, or any of a
wide variety of other causes. Often it may be crucial to determine the causes of the
acute hypotensive episodes in order to administer appropriate patients' treatment
before hypotensive episode. However, when the acute hypotensive episodes are not predicted
in time, the practitioners are left with insufficient time to determine the causes
of the acute hypotensive episodes and to start patient specific treatment. Also, due
to insufficient time appropriate treatment may not be administered. If an acute hypotensive
episode is not promptly and appropriately treated, it may result in an irreversible
organ damage and, eventually death.
SUMMARY OF THE INVENTION
[0003] The method includes determining a plurality of time varying hypotensive biomarkers
corresponding to plurality of physiological processes in patient's organism as a non-linear
dynamic complex system and generating an acute hypotension prediction classifier.
The acute hypotensive prediction classifier is based upon identifying and classifying
a three dimensional (3D) temporal representation of two or more biomarker dynamics
that appear before a hypotensive episode occurs.
[0004] Classification of the 3D temporal representation is based on calculation and comparison
with the critical threshold of the mathematical index (root mean square (RMS) of 2D
areas of 3D dynamic images under comparison, cross-correlation of 3D images, different
Euclidian distances, etc.) representing time dependences of difference between 3D
dynamic images. Such index versus time reflects temporal dynamics of the difference
between an initial (or "Standard") 3D representation of selected high resolution ECG
biomarkers (without or together with the additional biomarkers - oxygenation of microcirculatory
blood flows monitored by NIRS, lung function estimated by monitoring of an end tidal
CO2, etc.) and the evolution of such 3D representation in time before hypotensive
episode.
[0005] An alarm signal, before the hypotensive event occurs, is generated when the mathematical
index crosses the critical threshold. The alarm signal can be a visual alarm, audible
alarm or both.
[0006] The system includes the high resolution (not less than 500Hz) ECG subsystem. The
additional monitors reflecting behaviour of the patient's organism as a holistic non-linear
dynamic complex system before a hypotensive event can be included for example, near
infrared spectroscopy (NIRS), end tidal expiratory CO2 concentration, etc. For example
a personal computer (PC) is connected with the sensors and real-time monitors of plurality
of biomarkers (selected ECG biomarkers, brain parenchymal blood oxygenation, end tidal
expiratory CO2 concentration, etc.), processing subsystem that is configured to determine
a plurality of selected time variation of selected biomarkers, acute hypotension episode
prediction classifier's subsystem, which generates an alarm signal before hypotensive
episode and which automatically makes alarm decision analyzing 3D temporal representation
of two or more proposed biomarkers' comparing an initial "Standard" 3D representation
and variable 3D representation before an appearance of hypotensive episode.
BRIEF DESCRIPTION OF THE DRAWINGS
[0007] These and other features and aspects of embodiments of the present invention will
become better understood when the following detailed description is read with reference
to the accompanying drawings in which like characters represent like parts throughout
the drawings, wherein:
FIG. 1 is a block diagram of an acute hypotension prediction system, in accordance
with one embodiment of the present invention;
FIG. 2 and Fig.3 are diagrammatic illustrations of the architecture of the ECG biomarkers'
processing-subsystem referred to in FIG. 1, in accordance with one embodiment of the
present invention;
FIG. 4 is an exemplary graphical representation of invasively recorded mean arterial
blood pressure (ABP) dynamics before and during hypotensive episode which is defined
as a decrement of meanABP below 70 mmHg (or decrement of systolic ABP below 90 mmHg),
in accordance with an embodiment of the present systems. Here the meanABP monitoring
error bars show a typical uncertainty (+/- 2 standard deviation (SD) of random errors,
where SD = 10 mmHg) corridor of real-time invasive ABP monitoring;
FIG. 5 is an exemplary 3D graphical representation or 3D image of two preprocessed
selected ECG biomarkers: J(t) is the sensitivity of hypotension prediction specific
biomarker and V(t) - hypotension prediction specific biomarker both of which are further
explained and defined in the specification. J(t) and V(t) are calculated from monitoring
data points' density within 5 minutes of monitoring time, in accordance with an embodiment
of the present techniques. Fig. 5 illustrates normal or "Standard" 3D graph of selected
biomarkers J(t) and V(t) long time (after 32 minutes from the start of ECG monitoring,
Fig.4) before hypotensive episode .The same time scale as in Fig. 4 is used in this
figure and in Fig. 6-13. "Standard" here means 3D shape of two ECG biomarkers processed
in the same way as illustrated in Fig. 2 and Fig. 3 in the case, when the patient
with ECG monitoring has no hypotensive events within monitoring time from the start
of monitoring.
FIG. 6 is the same as Fig. 5, but at the time moment of 72 minutes from the start
of ECG monitoring.
FIG. 7 is the same as Fig. 5, but at the time moment of 87 minutes from the start
of ECG monitoring.
FIG. 8 is the same as Fig. 5, but at the time moment of 173 minutes from the start
of ECG monitoring.
FIG. 9 is the same as Fig. 5, but at the time moment of 217 minutes from the start
of ECG monitoring.
FIG.10 is the same as Fig. 5, but at the time moment of 228 minutes from the start
of ECG monitoring.
FIG.11 is the same as Fig. 5, but at the time moment of 242 minutes from the start
of ECG monitoring.
FIG.12 is the same as Fig. 5, but at the time moment of 252 minutes from the start
of ECG monitoring.
FIG.13 is the same as Fig. 5, but at the time moment of 263 minutes from the start
of ECG monitoring.
FIG.14 is a diagrammatic illustration of root mean square, verses time, RMS(t) function
calculated comparing initial or "Standard" 3D image (Fig.5) with other monitored 3D
images (some of them are presented in Fig. 6 - 13) before the start of the hypotensive
episode at approximately 240 seconds (when meanABP crosses the critical threshold
presented in Fig.4) in accordance with one embodiment of the present system.
FIG.15 is a diagrammatic illustration of an Area verses time calculated comparing
initial or "Standard" 3D image (Fig.5) with other monitored 3D images (some of them
are presented in Fig. 6 - 13) before the start of the hypotensive episode at approximately
240 seconds in accordance with one embodiment of the present system.
FIG.16 is a diagrammatic illustration of a Dmax_NORM verses time calculated comparing initial or "Standard" 3D image (Fig.5) with other
monitored 3D images (some of them are presented in Fig. 6 - 13) before the start of
the hypotensive episode at approximately 240 seconds in accordance with one embodiment
of the present system.
FIG. 17 is a diagrammatic illustration of rDij verses time calculated comparing initial or "Standard" 3D image (Fig.5) with other
monitored 3D images (some of them are presented in Fig. 6 - 13) before the start of
the hypotensive episode at approximately 240 seconds in accordance with one embodiment
of the present system.
FIG. 18 is a diagrammatic illustration of ΔE1 verses time comparing initial or "Standard" 3D image (Fig.5) with other monitored
3D images (some of them are presented in Fig. 6 - 13) before the start of the hypotensive
episode at approximately 240 seconds in accordance with one embodiment of the present
system.
FIG. 19 is a diagrammatic illustration of a ΔE2 verses time, calculated comparing initial or "Standard" 3D image (Fig.5) with other
monitored 3D images (some of them are presented in Fig. 6 - 13) before the start of
the hypotensive episode at approximately 240 seconds in accordance with one embodiment
of the present system.
FIG. 20 is a diagrammatic illustration of a ΔE3 verses time calculated comparing initial or "Standard" 3D image (Fig.5) with other
monitored 3D images (some of them are presented in Fig. 6 - 13) before the start of
the hypotensive episode at approximately 240 seconds in accordance with one embodiment
of the present system.
FIG. 21 is a Receiver Operation Characteristic (ROC) curve generated from cardiologic
patients validating and confirming the reliability of the invention method and device.
DETAILED DESCRIPTION OF THE INVENTION
[0008] Electrocardiography (ECG) is the process of recording the electrical activity of
a patient's heart over time using electrodes (sensors) placed on the patient's body.
FIG 1 is a general block diagram of one embodiment of the inventive system. FIG. 1
shows a patient (1) and 10 electrodes, or sensors (2-11) attached to the patient for
transmitting ECG signals to the ECG device(12). The ECG device is preferably a high
resolution ECG device having a processor (12a), software(12b) and storage(12c). The
processor and software are capable of making calculations using data generated by
measuring devices attached to patient that measure biological outputs such as processing
and analyzing ECG or respiratory signals(15). The ECG device could also be connected
to a personal computer (13) that includes a processor, software and storage (13a)
capable of processing and analyzing the ECG signals in order to predict a hypotensive
event. The system also includes storage (12a or 13a) for storing threshold alarm values
that can be compared to processed data. The system also includes an alarm (14) which
activates before a hypotensive event occurs and gives a warning signal to the caregivers
when the system predicts an upcoming hypotensive event. The advance warning signal
gives caregivers the opportunity to take corrective or remedial action with the patient
before the hypotensive event occurs in order to avoid pathophysiological consequences
and unfavorable outcome of patient after hypotensive event. The system also has the
ability to receive other signals from other devices that generate data of physiological
measurements that can be used to calculate hypotension prediction specific biomarkers.
(15).
[0009] As will be described in detail hereinafter, systems and methods that predict potential
acute hypotensive episodes in patients are presented. The systems and methods predict
the potential acute hypotensive episodes in an automated manner without human interference.
A rapid, accurate, sensitive and specific prediction of the potential acute hypotensive
episodes may provide adequate time to diagnose the cause of the potential acute hypotensive
episodes in the patients. Therefore, the prediction of the acute hypotensive episodes
may improve possibilities of determination of the kind of intervention or treatment
required to prevent the patients from the potential acute hypotensive episodes. In
one embodiment, the systems and methods predict the potential acute hypotensive episodes
in patients who are admitted in intensive care units (ICUs).
[0010] Referring to Figure 2, which is a diagrammatic illustration of the architecture of
the ECG biomarkers processing - subsystem referred to in FIG. 1.
[0011] The processing of the ECG signal to derive the prognostic biomarkers
V[dsk(JT,QRS)] and
J[
dsk(JT,QRS),JT] works as follows. ECG signals are received via sensors attached to a patient. The
ECG signals from the sensors are preferably synchronous on a number of channels, preferably
10 to 12 channels, and the sampling frequency is not less than 500 Hz. This allows
for continuous registration of the ECG signals with needed temporal resolution.
[0012] The ECG signal is processed for calculation of RR'n, JT'n and QRS'n intervals for
use in data arrays for each cardio cycle (n) measured. For these calculations, RR
n' is the duration of ECG RR interval meaning the time between 2 R peaks in milliseconds
(ms). This interval is used as a time stamp (marker) for all calculations used during
processing and also used for the synchronization of ECG and blood pressure data.
JTn' is the duration of the ECG JT interval meaning the interval from the junction point
J (at the end of the QRS interval) until the end of the T wave in ms. QRS'n is the
duration of the ECG QRS complex interval in ms.
[0013] Normalization of the JTn and QRSn data for each cardio cycle (n) to interval [0,1]
is also performed using the following formula:

QR
Sn' is the duration interval of ECG QRS complex in ms. n=(0,1,2, etc.) is the number
of cardio cycles measured.

[0014] Processing then occurs for formation of matrixes An for every cardio cycle n. A series
of second order matrixes is constructed as follows:

again, where n is the number of cardiocycles.
[0015] Calculation of dsk (JTn,QRSn) for every cardio cycle n is performed. Calculations
of mathematical characteristics: difference of matrix
An: dfr
An :=
JTn-QRSn, co-diagonal product of matrix
An: cdp
An :=(
JTn-1 - QRSn-1)·(
JTn+1 - QRSn+1)
. Discriminant is calculated as follows: dsk(JT
n, QRS
n) = dsk
An = (dfrA
n)
2 + 4cdp
An.
[0016] Calculation of biomarkers J (dsk(JTn,QRSn)JT) and V (dsk(JTn,QRSn)) for 20 cardio
cycles is performed as follows. The slope of linear dependence between
dsk(JTn,QRSn) and
JTn for each 20 cardio cycles results in
J(
dsk(
JT,QRS)
,JT)
; and the ratio between the standard deviation and the mean of
dsk(JTn,QRSn) in each 20 cardio cycles of
dsk(JTn,QRSn) results in
V[dsk(JT,QRS)].
[0017] Processing of J(dsk(QRS,JT)JT) and V(dsk(QRS,JT)) data series is done in order to
predict hypotensive events. One embodiment of the invention uses the following algorithm
of
J(dsk(QRS,JT)) and
V(dsk(QRS,JT)) data processing for prediction of hypotension events as shown in Figure 3. The preferred
algorithm uses the following steps:
[0018] Input data of
J(dsk(QRS,JT)) and
V(dsk(QRS,JT)) pairs reading and forming of the data array
A{ti, 1...N}. Data array
A{ti, 1...N} is formed from pairs of
J(dsk(QRS,JT)JT) and
V(dsk(QRS,JT)) data points received within a set time interval (preferably 15 min). Approximate
number of points of data array N is ~ 45 (~3 points per minute). Data are updated
periodically every 5 minutes by forming new data array
A{ti, 1...N}.
[0019] Formation of
J(dsk(QRS,JT)) and
V(dsk(QRS,JT)) data points distribution field array and calculation of density of
J(dsk(QRS,JT)) and
V(dsk(QRS,JT)) data points. Pairs of
J(dsk(QRS,JT)JT) and
V(dsk(QRS,JT)) points are plotted in field J(y - axis) vs V(x - axis). The field area is limited
from min V = -0.5 to max V=5 in x axis. Field area is limited from min J = -4 to max
J=4 in y axis. Limited area is segmented by steps Δ
V =0.25 in x axis and Δ
s =0.2 in y axis. Finally, the two dimensional (2D) array of data points distribution
density -
D{ti, 1...n, 1...m} is calculated. (Figures 5-13). Here n is the number of discrete segments in x axis
and m is the number of discrete segments in y axis.
[0020] Next, contour plot is calculated on density
D{ti, 1:n, 1:m} on set threshold
level=0.29 *max
(D{ti, 1...n, 1...m}). The contour plot also can be calculated from the density function
D{ti, 1:n, 1:m} using different threshold values, e.g. level +.29 below the maximal value 1.0 of
maxD or other levels.
[0021] Calculation of contour
Area(
ti,)
, centroids coordinates Xc
(ti) and
Yc(ti) and maximum value of density function
Dmax(ti) and
Dmax_NORM(ti). These parameters are calculated during each cycle of data processing:
- Area of the contour is Area(ti). The sum value of all areas is calculated if there are only a few contours found.
An example of graphing Area verses time can be seen in FIG 15.
- The coordinates of contour center of mass (centroids) Xc(ti) and Yc(ti). The centroids are calculated for the contour having maximal area, if there are only
a few contours found.
- Maximum value of density function Dmax(ti) = max (D{ti, 1:n, 1:m}) and normalized value of maximum density Dmax_NORM(ti) = max (D{ti, 1:n, 1:m})/sum(D{ti, 1:n, 1:m}).
[0022] Accumulating data within a set time interval T by updating them by data period Δt.
Storing reference set of data
{D{t0, 1:n, 1:m}; Area(t0); Xc(t0),YC(t0);Dmax(t0); Dmax_NORM(t0)} that corresponds the initial stable conditions. Tracking and visualizing centroids
within set time interval T by updating data periodically also occurs. An example of
graphing
Dmax_NORM verses time can be seen in FIG 16.
[0023] Calculation of cross-correlation function and correlation coefficient between current
density
D{ti, 1...n, 1...m} and stored density
{D{ t0, 1...n, 1...m} occurs. Calculation is performed of 2D cross-correlation function
CDij and 2D correlation coefficient
rDij between current
D{ti, 1...n, 1...m} and stored reference value of density distribution
D{t0, 1...n, 1...m}. Determination of peak coordinates
xpeak_c_Dij and
ypeak_C_Dij of cross-correlation function
CDij. Calculation of 2D auto-correlation c
Dii function for stored value of density distribution
D{t0, 1...n, 1...m}. Determination reference peak coordinates
xpeak_0 and
ypeak_0 of cross-correlation function
CDii. An example of graphing
rDij verses time can be seen in FIG 17.
[0024] Calculation of Euclidean distances Δ
E1 between current centroids
Xc(ti), Yc(ti) and stored reference centroid values
Xc(t0),Yc(t0). An example of graphing Δ
E1 verses time can be seen in FIG 18.
[0025] Calculation of Euclidean distances Δ
E2 between current set of multiple factors at time moment
ti and stored set of reference multiple factors corresponding to time moment
t0. Set of multiple factors consists of:
- centroids Xc(ti), Yc(ti)
- Area(ti)
[0026] normalized maximum density
Dmax_NORM(ti). An example of graphing Δ
E2 verses time can be seen in FIG 19.
[0027] Calculation of Euclidean distances Δ
E3 between parameters of autocorrelation and cross-correlatioin functions of density
distributions current density
D{ti, 1...n, 1...m} and stored density
D{t0, 1...n, 1...m}. Calculation of Euclidean distances Δ
E3 of peak coordinates shift x
peak_C_Dij and Y
peak_C_Dij from reference peak coordinates
xpeak_0 and
ypeak_0. An example of graphing Δ
E3 verses time can be seen in FIG 21.
[0028] Calculation root mean square (RMS) between current density distribution
D{ti, 1...n, 1...m} and stored reference value of density distribution
D{t0, 1...n, 1...m}. An example of graphing RMS can be seen in Figure 14.
[0029] Compare current values of monitored factors
Dmax_NORM, Area, ΔE1, ΔE2, ΔE3, rDij or
RMS versus time with critical threshold values, or alarm values. Forming of alarm signal
predicting of the hypotension episode the cases when monitored factors meets, reaches
or exceeds the critical threshold values or alarm values. For example, Figure 14 shows
a graph of RMS calculations in relative units verses time and the RMS(t) crossing
the critical threshold of 0.7 at a time approximately 75 minutes on the x-axis.
[0030] FIG. 15 shows a graph of Area in relative units verses time with the threshold number
equal to 0.16 relative units. The graph shows the time of predicting the hypotensive
event is at approximately 110 minutes as that is the time the measured units value
reaches the threshold number. At this time, because the measured factor reaches the
threshold value the processor can be programmed to generate an alarm to warn of the
predicted upcoming hypotensive event.
[0031] FIG. 16 shows a graph of
Dmax_NORM in relative units verses time with the threshold number equal to 0.35 relative units.
The graph shows the time of predicting the hypotensive event is at approximately 110
minutes as that is the time the measured units reaches the threshold number. At this
time, because the measured factor reaches the threshold value the processor can be
programmed to generate an alarm to warn of the predicted upcoming hypotensive event.
[0032] FIG. 17 shows a graph of
rDij in relative units verses time with the threshold number equal to 0.7 relative units.
The graph shows the time of predicting the hypotensive event is at approximately 90
minutes as that is the time the measured units reaches the threshold number. At this
time, because the measured factor reaches the threshold value the processor can be
programmed to generate an alarm to warn of the predicted upcoming hypotensive event.
[0033] FIG. 18 shows a graph of Δ
E1 in relative units verses time with the threshold number equal to 0.2 relative units.
The graph shows the time of predicting the hypotensive event is at approximately 93
minutes as that is the time the measured units reaches the threshold number. At this
time, because the measured factor reaches the threshold value the processor can be
programmed to generate an alarm to warn of the predicted upcoming hypotensive event.
[0034] FIG. 19 shows a graph of Δ
E2 in relative units verses time with the threshold number equal to 0.28 relative units.
The graph shows the time of predicting the hypotensive event is at approximately 98
minutes as that is the time the measured units reaches the threshold number. At this
time, because the measured factor reaches the threshold value the processor can be
programmed to generate an alarm to warn of the predicted upcoming hypotensive event.
[0035] FIG. 20 shows a graph of Δ
E3 in relative units verses time with the threshold number equal to 0.7 relative units.
The graph shows the time of predicting the hypotensive event is at approximately 88
minutes as that is the time the measured units reaches the threshold number. At this
time, because the measured factor reaches the threshold value the processor can be
programmed to generate an alarm to warn of the predicted upcoming hypotensive event.
[0036] The invention contemplates one or more or various combinations of the monitored factors
being used to determine when an alarm should be generated to warn of an upcoming hypotensive
event. While single monitored factors can be used to trigger and alarm the sensitivity
of different monitored factors can vary in clinical testing. Accordingly, other embodiments
use a combination of more than one monitoring factor in an integrated alarm. The integrated
alarm can be set to trigger in a variety of circumstances. For example, it can be
triggered when more than one monitoring factors shows an alarm or it can be triggered
when a majority of the monitored factors being monitored it triggered indicating and
showing an alarm. In the preferred embodiment, all monitored factors are used to decide
if an alarm should be triggered when a majority of the monitored factors cross their
thresholds.
[0037] Affirmative prediction is indicated by comparing two 3D images - initial one peak
image and other images with less height than the main peak and with other peaks which
represent chaotic process. The 3D image representing the chaotic process reflects
the patient's organism is approaching hypotensive event. When the patient is healthy
the system measurements will generate images which will show a simple peak representative
of a steady state. As the patient becomes less healthy, begins to depart from a steady
state the system measurements will generate more chaotic images. The closer the patient
gets to a hypertensive event the more and more chaotic the images become (as the system
measurements move further from a steady state) which is indicative of a system when
the organism as a non-linear complex dynamic system is unstable.
[0038] Euclidian distance can be one of the possible ways to monitor the difference between
the initial 3D image of proposed biomarker and the next time generated images as the
time gets closer to a hypotensive event. Correlation is another way to monitor such
differences. Other image analysis methods can also be used, like RMS(t) function.
[0039] FIG. 21 is a Receiver Operation Characteristic (ROC) curve generated from cardiologic
patients validating and confirming the reliability of the invention method and device.
The inventive method and system (FIG. 1) has been prospectively validated on 60 patients
of cardiological intensive care units of three independent cardiological clinics.
Patients with and without hypotensive episodes were included into prospective clinical
study. ROC analysis has been used for estimation of sensitivity, specificity and area
under curve (AUC) of hypotension episode prediction system. FIG. 21 shows the ROC
curve of the clinically validated system using the most reliable monitoring factor
Δ
E1. The ROC curve confirms that the inventive hypotension episode prediction method
and apparatus predicthypotensive episodes with very high and clinically acceptable
sensitivity at 85% and specificity at 92%. The Area Under the ROC Curve (AUC) is also
high at 94%. Sensitivity, specificity and AUC values all confirm that invented system
solves the problem of reliable prediction of hypotensive episodes and that it can
be widely used in clinical practice
[0040] Although the invention has been described with reference to a particular arrangement
of parts, features and the like, these are not intended to exhaust all possible arrangements
or features, and indeed many other modifications and variations will be ascertainable
to those of skill in the art.
[0041] While only certain features of the invention have been illustrated and described
herein, many modifications and changes will occur to those skilled in the art. It
is, therefore, to be understood that the appended claims are intended to cover all
such modifications and changes as fall within the true spirit of the invention.
1. A method comprising:
receiving at an ECG device ECG signals generated by ECG sensors, over a number of
cardio cycles, the ECG device comprising a processor, software, storage, and a threshold
alarm value stored in said storage;
processing the ECG signals using the processor to calculate data for each cardio cycle;
forming matrixes for each cardio cycle using the calculated data;
calculating biomarkers using calculated data;
generating a monitored factor using said biomarkers;
comparing said monitored factor to a threshold alarm value for said monitored value.
2. The method of claim 1, wherein the method is preferably for predicting an acute hypotensive
episode of a patient, and wherein the method comprises at least one of
attaching the ECG sensors to a patient;
triggering an alarm when said threshold alarm value is exceeded by said monitored
factor.
3. The method of claim 1 or 2 wherein said biomarkers are graphed in three dimensions
to create three dimensional plots.
4. The method of claim 3 werein monitor factors Dmax_NORM, Area, ΔE1, ΔE2, ΔE3, rDij
and RMS versus time are generated based on three dimensional plots.
5. The method of any of claims 1 to 4 wherein said monitored factor is one of Dmax_NORM,
Area, ΔE1, ΔE2, ΔE3, rDij or RMS versus time.
6. The method of claim 5 wherein said monitored factor is RMS versus time.
7. The method of claim 5 wherein said monitored factor is ΔE1.
8. The method of any of claims 1 to 7 wherein in a second monitored factor is generated
using said biomarkers; comparing said second monitored factor to a second alarm threshold
and
triggering said alarm when said second threshold alarm is exceeded by said second
monitored factor.
9. A system comprising:
an ECG device comprising a processor, software executing on said processor, and storage
coupled to and accessible to said processor storing a threshold value; wherein
said processor and software is arranged to receive ECG signals and calculate data
for each cardio cycle;
said processor and software is arranged to form matrixes for each cardio cycle using
the calculated data;
said processor and software is arranged to calculate biomarkers using said calculated
data;
said processor and software is arranged to generate a monitored factor using said
biomarkers;
said processor and software is arranged to compare said monitored factor to the threshold
value stored in said storage; and
said processor and software is arranged to generate an alarm when said monitored factor
reaches said threshold.
10. The system of claim 9, wherein the system is preferably for predicting an acute hypotensive
episode of a patient, and wherein the system comprises ECG sensors for attaching to
a patient and leads coupled to said ECG sensors for transmitting ECG signals generated
by the sensors attached to the patient to said ECG device.
11. The system of claim 9 or 10 wherein said biomarkers are processed by said processor
and software and are graphed in three dimensions to create three dimensional plots.
12. The system of claim 11 were in the processer and software generates on a three dimensional
plots the monitor factors Dmax_NORM, Area, ΔE1, ΔE2, ΔE3, rDij and RMS versus time.
13. The system of any of claims 9 to 12 wherein said processor and software generates
a monitored factor, at least one of which is Dmax_NORM, Area, ΔE1, ΔE2, ΔE3, rDij
or RMS versus time.
14. The system of any of claims 9 to 13 wherein said monitored factor is ΔE1.
15. The system of any of claims 9 to 14 wherein said processor and software generates
a second monitored factor using said biomarkers and said processor and software compares
said second monitored factor to a second alarm threshold, said processor and software
triggering said alarm when said second threshold alarm is exceeded by said second
monitored factor.